Your AI App Should NOT Depend on One Model

codebasics · Intermediate ·🧠 Large Language Models ·2h ago
AI apps are becoming more powerful… but also more dependent on tools and models. What if your AI app could access 8,000+ tools through a single connection? And what if you could switch between GPT, Claude, Gemini, or other models anytime without rebuilding your app? That’s exactly what we covered in our latest video. We also talk about: • Why MCP is becoming important for AI systems • How Zapier simplifies integrations • Why vendor lock-in can become a real problem • How to build your own MCP client using Python A very practical topic for anyone building AI products or automations. Full video link - https://youtu.be/eP1SY86QmrI?si=CVLjYnyCDdYKCwj5 Explore the Zapier MCP - https://bit.ly/3PlsbfI #AI #Python #MCP #Zapier #Automation #LLM #Tech #short
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